tfm.utils.activations.hard_swish
Computes a hard version of the swish function.
tfm.utils.activations.hard_swish(
features
)
This operation can be used to reduce computational cost and improve
quantization for edge devices.
Args |
features
|
A Tensor representing preactivation values.
|
Returns |
The activation value.
|
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Last updated 2024-02-02 UTC.
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